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DV-SLAM (Dual-Sensor-Based Vector-Field SLAM) and Observability Analysis

Seung‐Mok Lee, Jongdae Jung, Shin Kim, In-Joo Kim, Hyun Myung

Year
2014
Citations
36

Abstract

In this paper, the observability of the conventional vector field simultaneous localization and mapping (SLAM) is examined by using the Fisher information matrix (FIM). If a mobile robot integrates sensor measurements while moving with a fixed heading, the measurements will be ambiguous because its measurement model is based on bilinear interpolation. To resolve the ambiguity, the authors proposed the novel dual-sensor-based vector-field SLAM (DV-SLAM), which is fully observable by using a mobile robot equipped with two sensors in a specific location to measure vector field signals. By examining its FIM, the condition is derived for the proposed DV-SLAM to be fully observable regardless of how the robot moves. The proposed DV-SLAM is implemented based on the Rao-Blackwellized particle filter with Earth's magnetic field sensors. Simulation and experimental results demonstrate that the proposed dual-sensor-based approach greatly improves the performance of the vector-field SLAM compared with the conventional approach.

Keywords

Simultaneous localization and mappingObservabilityComputer visionArtificial intelligenceParticle filterMobile robotComputer scienceVector fieldFisher informationTrajectory

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